Gao Han, Tang Yunwei, Jing Linhai, Li Hui, Ding Haifeng
Key Laboratory of Digital Earth Science, Institute of Remote Sensing and Digital Earth, Chinese Academy of Sciences, Beijing 100094, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Sensors (Basel). 2017 Oct 24;17(10):2427. doi: 10.3390/s17102427.
The segmentation of a high spatial resolution remote sensing image is a critical step in geographic object-based image analysis (GEOBIA). Evaluating the performance of segmentation without ground truth data, i.e., unsupervised evaluation, is important for the comparison of segmentation algorithms and the automatic selection of optimal parameters. This unsupervised strategy currently faces several challenges in practice, such as difficulties in designing effective indicators and limitations of the spectral values in the feature representation. This study proposes a novel unsupervised evaluation method to quantitatively measure the quality of segmentation results to overcome these problems. In this method, multiple spectral and spatial features of images are first extracted simultaneously and then integrated into a feature set to improve the quality of the feature representation of ground objects. The indicators designed for spatial stratified heterogeneity and spatial autocorrelation are included to estimate the properties of the segments in this integrated feature set. These two indicators are then combined into a global assessment metric as the final quality score. The trade-offs of the combined indicators are accounted for using a strategy based on the Mahalanobis distance, which can be exhibited geometrically. The method is tested on two segmentation algorithms and three testing images. The proposed method is compared with two existing unsupervised methods and a supervised method to confirm its capabilities. Through comparison and visual analysis, the results verified the effectiveness of the proposed method and demonstrated the reliability and improvements of this method with respect to other methods.
高空间分辨率遥感图像的分割是基于地理对象的图像分析(GEOBIA)中的关键步骤。在没有地面真值数据的情况下评估分割性能,即无监督评估,对于分割算法的比较和最优参数的自动选择非常重要。这种无监督策略目前在实践中面临若干挑战,例如设计有效指标的困难以及特征表示中光谱值的局限性。本研究提出一种新颖的无监督评估方法来定量测量分割结果的质量,以克服这些问题。在该方法中,首先同时提取图像的多个光谱和空间特征,然后将其整合到一个特征集中,以提高地面物体特征表示的质量。所设计的用于空间分层异质性和空间自相关性的指标被纳入,以估计这个整合特征集中的片段属性。然后将这两个指标组合成一个全局评估指标作为最终质量得分。使用基于马氏距离的策略来考虑组合指标的权衡,这可以通过几何方式展现。该方法在两种分割算法和三幅测试图像上进行了测试。将所提出的方法与两种现有的无监督方法和一种监督方法进行比较,以确认其能力。通过比较和视觉分析,结果验证了所提方法的有效性,并证明了该方法相对于其他方法的可靠性和改进之处。